Thứ sáu, 25/04/2025 | 12:28 GMT+7
A transfer learning model for identifier-based services Abstract: Identity-based services are becoming more and more popular and bring many benefits to users. Particularly, automatic identification helps bring highclass service experiences to beneficiaries in many fields such as education, resort travel, health care, customer care. Many models and methods have been proposed to solve the problem of user identification, in which face image-based techniques are widely used due to many advantages in terms of data collection ability, personalization. However, an identification system with high accuracy and real-time speed is still the goal of many studies in recent times. In this paper, we introduce a transfer learning based method that combines CNN and SVM models for the face identification problem. A CNN architecture is proposed and used as a feature extractor and then, the SVM model for object classification. The obtained results show a significant improvement in the accuracy of the image classification as well as the training time. Keywords: Transfer learning, neural network, feature extraction, SVM. |
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03/04/2025